Derya Ubeyli Elif
Department of Electrical and Electronics Engineering, Faculty of Engineering, TOBB Ekonomi ve Teknoloji Universitesi, 06530 Söğütözü, Ankara, Turkey.
Comput Biol Med. 2009 Aug;39(8):733-41. doi: 10.1016/j.compbiomed.2009.06.001. Epub 2009 Jun 24.
This paper presented the usage of statistics over the set of the features representing the electroencephalogram (EEG) signals. Since classification is more accurate when the pattern is simplified through representation by important features, feature extraction and selection play an important role in classifying systems such as neural networks. Multilayer perceptron neural network (MLPNN) architectures were formulated and used as basis for detection of electroencephalographic changes. Three types of EEG signals (EEG signals recorded from healthy volunteers with eyes open, epilepsy patients in the epileptogenic zone during a seizure-free interval, and epilepsy patients during epileptic seizures) were classified. The selected Lyapunov exponents, wavelet coefficients and the power levels of power spectral density (PSD) values obtained by eigenvector methods of the EEG signals were used as inputs of the MLPNN trained with Levenberg-Marquardt algorithm. The classification results confirmed that the proposed MLPNN has potential in detecting the electroencephalographic changes.
本文介绍了对表示脑电图(EEG)信号的特征集进行统计的用法。由于通过重要特征进行表示来简化模式时分类更准确,因此特征提取和选择在诸如神经网络的分类系统中起着重要作用。制定了多层感知器神经网络(MLPNN)架构,并将其用作检测脑电图变化的基础。对三种类型的EEG信号(睁眼的健康志愿者记录的EEG信号、癫痫发作间期癫痫源区的癫痫患者记录的EEG信号以及癫痫发作期间的癫痫患者记录的EEG信号)进行了分类。通过EEG信号的特征向量方法获得的选定李雅普诺夫指数、小波系数和功率谱密度(PSD)值的功率水平用作采用列文伯格-马夸尔特算法训练的MLPNN的输入。分类结果证实,所提出的MLPNN在检测脑电图变化方面具有潜力。